Innovation ARIMA models application to predict pressure variations in water supply networks with open-loop control. Case study in Noja (Cantabria, Spain)

IF 8 Q1 ENERGY & FUELS
David Muñoz-Rodríguez , Manuel J. González-Ortega , María-Jesús Aguilera-Ureña , Andrés Ortega-Ballesteros , Alberto-Jesus Perea-Moreno
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Abstract

Water utilities are increasingly concerned about losses, leaks, and illegal connections in their distribution networks. Pressure control is typically managed through pressure reducing valves (PRVs) with electrically controlled actuators based on predefined tables according to the pressure at the critical point control (CPC). This open-loop control method lacks direct feedback between the PRV and CPC, making it challenging to distinguish whether pressure variations originate from normal head losses or abnormal network conditions.
Unlike traditional applications of ARIMA focused on water demand forecasting, this study explores its novel use in pressure management within distribution networks, aiming to predict P3 (CPC) pressure based on head losses across a defined hydraulic sector. To achieve this objective, a predictive model based on the Box-Jenkins methodology and its variations is implemented to analyse time series data. An action path is established to determine the optimal model—ARIMA, ARMA, ARMAX, etc.—which is subsequently validated using real operational data from Noja, a coastal town in northern Spain characterized by significant seasonal population fluctuations. By accurately forecasting CPC pressure, this system enhances the detection of anomalous patterns, enabling more efficient network pressure management. The study demonstrates the potential of advanced modelling techniques in optimizing water distribution networks, providing valuable insights to improve system efficiency, reliability, and sustainability in urban environments.

Abstract Image

创新ARIMA模型应用于开环控制的供水网络压力变化预测。西班牙坎塔布里亚Noja案例研究
自来水公司越来越担心输水管网的损失、泄漏和非法连接。压力控制通常通过带有电控执行器的减压阀(prv)进行管理,该减压阀基于临界点控制(CPC)压力的预定义表。这种开环控制方法缺乏PRV和CPC之间的直接反馈,因此很难区分压力变化是由正常水头损失还是异常网络状况引起的。与传统的专注于水需求预测的ARIMA应用不同,本研究探索了其在配电网压力管理中的新用途,旨在根据确定的水力部门的水头损失预测P3 (CPC)压力。为了实现这一目标,基于Box-Jenkins方法及其变体的预测模型被用于分析时间序列数据。建立了一个行动路径,以确定最优模型- arima, ARMA, ARMAX等-随后使用西班牙北部沿海城镇Noja的实际操作数据进行验证,Noja具有显著的季节性人口波动特征。通过准确预测CPC压力,该系统增强了对异常模式的检测,从而实现更有效的网络压力管理。该研究展示了先进的建模技术在优化供水网络方面的潜力,为提高城市环境中供水系统的效率、可靠性和可持续性提供了有价值的见解。
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来源期刊
Energy nexus
Energy nexus Energy (General), Ecological Modelling, Renewable Energy, Sustainability and the Environment, Water Science and Technology, Agricultural and Biological Sciences (General)
CiteScore
7.70
自引率
0.00%
发文量
0
审稿时长
109 days
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